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In the digital & intelligent era, integrating AI technology into library services has spurred innovation but also brought potential risks. This paper identifies and assesses AI-related risks in smart libraries from a technostress perspective, proposing governance strategies to enhance service quality and provide a reference for smart library development. Using content analysis and technostress theory, potential risk sources of AI applications in smart libraries are analyzed across five dimensions: techno-overload, techno-invasion, techno-complexity, techno-insecurity, and techno-uncertainty. The Decision Making Trial and Evaluation Laboratory (DEMATEL) method is then applied to assess causal relationships among risks, revealing two categories: technical-level risks (AI malfunction, emotional disconnection, AI misjudgement, algorithmic bias, and responsibility ambiguity) and societal-level risks (security threat, fairness challenges, regulatory ambiguity, copyright concern, and occupational maladaptation). Key findings highlight AI malfunction and misjudgment as driving risks, while regulatory ambiguity and occupational maladaptation are resultant risks. The paper proposes hierarchical risk governance strategies, including prioritizing high-driven risks, managing resultant risks, and dynamically adjusting adaptation rules.
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Xu Wang
Fujian Normal University
Fang Xie
Yanshan University
Cheng Guoquan
Information Development
Southeast University
Yanshan University
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Wang et al. (Tue,) studied this question.
synapsesocial.com/papers/6a10856f8090e499da614bf8 — DOI: https://doi.org/10.1177/02666669251329032